全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

Artificial Intelligence and Big Data for Personalized Preventive Healthcare: Predicting Health Risks and Enhancing Patient Adherence

DOI: 10.4236/oalib.1112873, PP. 1-17

Subject Areas: Artificial Intelligence, Applications of Communication Systems

Keywords: Big Data, Predictive Modeling, Chronic Diseases, Machine Learning, Wearable Devices, Patient Adherence

Full-Text   Cite this paper   Add to My Lib

Abstract

Personalized preventive healthcare, powered by Artificial Intelligence (AI) and Big Data analytics, offers a transformative approach to healthcare by tailoring interventions based on an individual’s health risks and lifestyle factors. This study investigates the application of AI models, utilizing Big Data, to design and implement personalized preventive healthcare programs aimed at improving patient outcomes and adherence to health recommendations. The primary objective is to leverage machine learning algorithms to predict health risks, focusing on chronic diseases such as diabetes, hypertension, and cardiovascular diseases (CVDs). Using data from electronic health records (EHRs), wearable devices, and patient demographics, we train models using random forests, logistic regression, and support vector machines (SVMs). These models predict disease risk and generate real-time, personalized intervention strategies. Our results demonstrate that AI-driven models can predict disease onset with high accuracy and provide adaptive, individualized recommendations. Additionally, the study highlights challenges related to data privacy, integration into healthcare systems, and the scalability of such solutions. This research contributes to the growing field of personalized preventive healthcare by showcasing the potential of AI and Big Data in improving disease prediction, enhancing patient engagement, and optimizing healthcare delivery.

Cite this paper

Nurani, B. , Kabir, F. , Munmun, Z. S. and Akter, R. (2025). Artificial Intelligence and Big Data for Personalized Preventive Healthcare: Predicting Health Risks and Enhancing Patient Adherence. Open Access Library Journal, 12, e2873. doi: http://dx.doi.org/10.4236/oalib.1112873.

References

[1]  Malik, Smith, J. and Johnson, A. (2020) AI in Healthcare: Predictive Models and Preventive Care. Journal of Healthcare Innovation, 35, 102-115.
[2]  Williams, R., et al. (2019) Big Data and Healthcare: Opportunities and Challenges. International Journal of Health Informatics, 28, 45-60.
[3]  Miller, H. and Brown, P. (2021) Personalized Medicine: The Role of AI in Chronic Disease Management. Clinical AI Research, 18, 112-125.
[4]  Liu, L. and Zhang, Z. (2020) Wearable Devices and Their Role in Preventive Healthcare. Journal of Medical Systems, 44, 89-98.
[5]  Patel, S., et al. (2018) Big Data Analytics in Healthcare: Applications and Future Direc-tions. Healthcare Technology Letters, 5, 210-222.
[6]  Zhao, Y., et al. (2021) Personalized Healthcare Interventions using Machine Learning. Journal of Medical AI, 3, 78-92.
[7]  Kapoor, A. and Singh, R. (2019) Real-Time Health Monitoring Systems and Their Application in Preventive Healthcare. International Journal of Biomedical Engineering, 29, 255-268.
[8]  Wu, Q., et al. (2019) Im-proving Patient Adherence with Personalized Health Pro-grams. Journal of Preventive Medicine, 39, 112-120.
[9]  Sharma, N., et al. (2021) Optimizing Patient Adherence through AI-Powered Interventions. Journal of Health Management, 42, 255-269.
[10]  Wilson, M. and Parker, J. (2020) AI in Healthcare: Addressing Privacy and Security Concerns. Health Informatics Journal, 26, 341-353.
[11]  Zhang, F., et al. (2019) Challenges in Implementing Big Data and AI in Healthcare. Health Data Science Journal, 7, 85-97.
[12]  Thompson, K., et al. (2020) Interdisciplinary Approaches to AI in Healthcare. Medical Informatics Review, 21, 152-165.
[13]  Harris, M., et al. (2021) Ethical and Legal Considerations in AI-Driven Healthcare. Journal of Ethics in Medicine, 22, 115-126.
[14]  Lee, T. and Li, X. (2021) Machine Learning Applications in Preventive Medicine: A Review. Journal of Preventive Health, 12, 135-148.
[15]  Garcia, J., et al. (2020) Integrating AI and Big Data into Personalized Healthcare Systems. Journal of Digi-tal Health, 5, 1-12.
[16]  Smith, J. and Johnson, A. (2020) AI in Healthcare: Predictive Models and Preventive Care. Journal of Healthcare Innovation, 35, 102-115.
[17]  Chauhan, R., Kaur, H. and Chang, V. (2020) An Optimized Integrated Framework of Big Data Analytics Managing Security and Privacy in Healthcare Data. Wireless Personal Communications, 117, 87-108. https://doi.org/10.1007/s11277-020-07040-8
[18]  Qin, X., Huang, Y., Hu, Z., Chen, K., Li, L., Wang, R.S., et al. (2023) Human Re-source Management Research in Healthcare: A Big Data Bibliometric Study. Human Resources for Health, 21, Article No. 94. https://doi.org/10.1186/s12960-023-00865-x
[19]  Rakibul Hasan Chowdhury, (2024) Big Data Analytics in the Field of Multifaceted Analyses: A Study on “Health Care Management”. World Journal of Advanced Research and Reviews, 22, 2165-2172. https://doi.org/10.30574/wjarr.2024.22.3.1995
[20]  Moro Visconti, R. and Morea, D. (2019) Big Data for the Sustainability of Healthcare Project Financing. Sustainability, 11, Article 3748. https://doi.org/10.3390/su11133748
[21]  Tu, J.V., Chu, A., Donovan, L.R., Ko, D.T., Booth, G.L., Tu, K., et al. (2015) The Cardiovascular Health in Ambulatory Care Research Team (CANHEART) Using Big Data to Measure and Improve Cardiovascular Health and Healthcare Services. Circulation: Cardiovascular Quality and Outcomes, 8, 204-212. https://doi.org/10.1161/circoutcomes.114.001416
[22]  Hossain, M.S. and Muhammad, G. (2018) Emotion-aware Con-nected Healthcare Big Data towards 5g. IEEE Internet of Things Journal, 5, 2399-2406. https://doi.org/10.1109/jiot.2017.2772959
[23]  Lee, C., Luo, Z., Ngiam, K.Y., Zhang, M., Zheng, K., Chen, G., et al. (2017) Big Healthcare Data Analytics: Challenges and Applications. In: Khan, S., Zomaya, A. and Abbas, A., Eds., Handbook of Large-Scale Distributed Computing in Smart Healthcare, Springer International Publishing, 11-41. https://doi.org/10.1007/978-3-319-58280-1_2
[24]  Sreedevi, A.G., Nitya Harshitha, T., Sugumaran, V. and Shankar, P. (2022) Ap-plication of Cognitive Computing in Healthcare, Cybersecurity, Big Data and IoT: A Literature Review. Information Processing & Management, 59, Article ID: 102888. https://doi.org/10.1016/j.ipm.2022.102888
[25]  Sunny, M.N.M., Saki, M.B.H., Nahian, A.A., Ahmed, S.W., Shorif, M.N., Atayeva, J., et al. (2024) Optimizing Healthcare Outcomes through Data-Driven Predictive Modeling. Journal of Intelligent Learning Systems and Applications, 16, 384-402. https://doi.org/10.4236/jilsa.2024.164019
[26]  Sunny, M.N.M., Sakil, M.B.H., Atayeva, J., Munmun, Z.S., Mollick, M.S. and Faruq, M.O. (2024) Predictive Healthcare: An IoT-Based ANFIS Framework for Diabetes Diagnosis. Engineering, 16, 325-336. https://doi.org/10.4236/eng.2024.1610024
[27]  Sunny, M.N.M., Saki, M.B.H., Nahian, A.A., Ahmed, S.W., Shorif, M.N., Atayeva, J., et al. (2024) Optimizing Healthcare Outcomes through Data-Driven Predictive Modeling. Journal of Intelligent Learning Systems and Applications, 16, 384-402. https://doi.org/10.4236/jilsa.2024.164019
[28]  Sunny, M.N.M., Sakil, M.B.H., Atayeva, J., Munmun, Z.S., Mollick, M.S. and Faruq, M.O. (2024) Predictive Healthcare: An IoT-Based ANFIS Framework for Diabetes Diagnosis. Engineering, 16, 325-336. https://doi.org/10.4236/eng.2024.1610024
[29]  Sunny, M.N.M., et al. (2024) Classification of Cancer Stages Using Machine Learning on Numerical Biomarker Data. South Eastern European Journal of Public Health, XXV S1, 1491-1498.

Full-Text


Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133